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RF Fingerprinting of LoRa Transmitters Using Machine Learning with Self-Organizing Maps for Cyber Intrusion Detection

Manish Nair, Tommaso Cappello, Shuping Dang, Vaia Kalokidou, Mark A Beach

20222022 IEEE/MTT-S International Microwave Symposium - IMS 202217 citationsDOIOpen Access PDF

Abstract

In this paper, a novel unsupervised machine learning (ML) algorithm is presented for the expeditious RF fingerprinting of LoRa modulated chirps. Identification based on received signal strength indicator (RSSI) alone is unlikely to yield a robust means for sensor authentication within critical infrastructure deployment. Here, an unsupervised ML algorithm is used to rapidly train an artificial neural network (ANN) matrix creating self-organizing maps (SOMs) for each authentic transmitter and a potential rogue node. A general classifier can be trained on the SOMs for precisely profiling each transmitter as either genuine or rogue. By means of experimental validation, this methodology demonstrated cent-percent success in recognizing each transmitter, either being a real or a rogue node.

Topics & Concepts

TransmitterComputer scienceSelf-organizing mapArtificial neural networkArtificial intelligenceUnsupervised learningSoftware deploymentClassifier (UML)Intrusion detection systemProfiling (computer programming)Authentication (law)Signal strengthMachine learningPattern recognition (psychology)Wireless sensor networkData miningComputer networkComputer securityChannel (broadcasting)Operating systemWireless Signal Modulation ClassificationRadar Systems and Signal ProcessingWireless Communication Security Techniques
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